IEEE Access (Jan 2020)

Research on Recognition of Motion Behaviors of Copepods

  • Zhengrui Shi,
  • Lujie Cao,
  • Yu Han,
  • Haixing Liu,
  • Fengshou Jiang,
  • Yu Ren

DOI
https://doi.org/10.1109/ACCESS.2020.3012873
Journal volume & issue
Vol. 8
pp. 141224 – 141233

Abstract

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The motion behaviors of copepods has important scientific research value and there is very little research on recognition of their motion behaviors simultaneously. Recognition of the basic motion behaviors of copepods using deep learning methods can greatly reduce the time cost of distinguishing and statistics, as well as achieve the purpose of improving efficiency. Based on the characteristics of motion of copepods that bring challenges to the extraction of motion fragments from raw video and the establishment of data set, such as instantaneous moving, static status most time, small-scale and high-frequency, this article propose an improved Camshift algorithm for detection of moving targets to overcome these challenges and establish the motion behaviors image acquisition system and a standard data set of motion behaviors, which provides the experience and methods of marine zooplankton behaviors database. Finally, the LRCN network that combines the advantages of CNN and LSTM is adopted to study the impacts of different factors on the model performance, such as the number of frames of sample, preprocessing operations and sample dimensions. Experimental results show that the LRCN network has excellent potential in classification of motion behaviors of copepods, when the number of frames of sample reaches 7, the precison rate, recall rate, f1-score are 0.96, 0.95, 0.95, respectively. In addition, the rise in number of frames and preprocessing has a positive effect on the recognition, the 4D samples (image sequence) is more suitable for the LRCN model than 3D samples (trajectory image).

Keywords